Department of Cognitive Sciences, Psychology, Education and Cultural Studies (COSPECS), University of Messina, 98122 Messina, Italy.
Department of Electrical, Electronic and Computer Engineering (DIEEI), University of Catania, 95125 Catania, Italy.
Sensors (Basel). 2023 Feb 26;23(5):2581. doi: 10.3390/s23052581.
Passive Human Sensing (PHS) is an approach to collecting data on human presence, motion or activities that does not require the sensed human to carry devices or participate actively in the sensing process. In the literature, PHS is generally performed by exploiting the Channel State Information variations of dedicated WiFi, affected by human bodies obstructing the WiFi signal propagation path. However, the adoption of WiFi for PHS has some drawbacks, related to power consumption, large-scale deployment costs and interference with other networks in nearby areas. Bluetooth technology and, in particular, its low-energy version Bluetooth Low Energy (BLE), represents a valid candidate solution to the drawbacks of WiFi, thanks to its Adaptive Frequency Hopping (AFH) mechanism. This work proposes the application of a Deep Convolutional Neural Network (DNN) to improve the analysis and classification of the BLE signal deformations for PHS using commercial standard BLE devices. The proposed approach was applied to reliably detect the presence of human occupants in a large and articulated room with only a few transmitters and receivers and in conditions where the occupants do not directly occlude the Line of Sight between transmitters and receivers. This paper shows that the proposed approach significantly outperforms the most accurate technique found in the literature when applied to the same experimental data.
被动人体感应 (PHS) 是一种收集人体存在、运动或活动数据的方法,不需要被感知的人体携带设备或主动参与感应过程。在文献中,PHS 通常通过利用专用 WiFi 的信道状态信息变化来实现,这些变化受到人体阻挡 WiFi 信号传播路径的影响。然而,采用 WiFi 进行 PHS 存在一些缺点,涉及到功耗、大规模部署成本以及对附近区域其他网络的干扰。蓝牙技术,特别是其低能耗版本蓝牙低能耗 (BLE),由于其自适应跳频 (AFH) 机制,成为了 WiFi 缺点的有效解决方案。本工作提出了应用深度卷积神经网络 (DNN) 来改进 BLE 信号变形的分析和分类,以用于 PHS,使用商业标准 BLE 设备。所提出的方法已应用于在仅使用少量发射器和接收器且在被感知者不直接遮挡发射器和接收器之间视线的情况下,可靠地检测大型复杂房间内的人体占用情况。本文表明,所提出的方法在应用于相同的实验数据时,明显优于文献中最准确的技术。